WIKINDX

WIKINDX Resources

Huang, J., Hu, Z., Jing, Z., Gao, M., & Wu, Y. Piccolo2: General Text Embedding with Multi-task Hybrid Loss Training. 
Resource type: Journal Article
BibTeX citation key: anon.75
View all bibliographic details
Categories: General
Creators: Gao, Hu, Huang, Jing, Wu
Attachments   URLs   https://www.semant ... tm_medium=34059335
Abstract
Piccolo2 is introduced, an embedding model that surpasses other models in the comprehensive evaluation over 6 tasks on CMTEB benchmark, setting a new state-of-the-art state-of-the-art in embedding models. In this report, we introduce Piccolo2, an embedding model that surpasses other models in the comprehensive evaluation over 6 tasks on CMTEB benchmark, setting a new state-of-the-art. Piccolo2 primarily leverages an efficient multi-task hybrid loss training approach, effectively harnessing textual data and labels from diverse downstream tasks. In addition, Piccolo2 scales up the embedding dimension and uses MRL training to support more flexible vector dimensions. The latest information of piccolo models can be accessed via: https://huggingface.co/sensenova/
  
Notes
[Online; accessed 25. May 2024]
  
WIKINDX 6.11.0 | Total resources: 209 | Username: -- | Bibliography: WIKINDX Master Bibliography | Style: American Psychological Association (APA)